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References

Blanchard (2020)

Blanchard, J. 2020. “Lab 6 : Data Maps and Interactive Graphs from the Covid-19 Reporting Data.” Lab 6 Instructions. https://jeffreyblanchard.github.io/EvoGeno/EvoGeno_Lab6_maps.html.